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Vnstock Free Expert

Runs an end-to-end vnstock workflow for free-tier-safe Vietnam stock valuation, ranking, and API operations with strict rate-limit control; used when users r...

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版本1.0.2
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name: vnstock-free-expert description: Runs an end-to-end vnstock workflow for free-tier-safe Vietnam stock valuation, ranking, and API operations with strict rate-limit control; used when users request Vietnamese stock analysis under free-tier constraints. compatibility: Requires Python 3.x, vnstock package, pandas, internet access, and optional VNSTOCK_API_KEY in .env.

VNStock Free Expert

Use this skill when the user needs advanced Vietnam stock analysis with vnstock, while staying safe on free-tier limits.

Important packaging note

This skill is self-contained and does not require shipping a separate vnstock/ docs folder. All operational knowledge needed by the agent is stored under:

  • references/

Read order

  1. Read references/capabilities.md.
  2. Read references/method_matrix.md for exact class/method mapping.
  3. Read references/free_tier_playbook.md before large runs.

Scope and constraints

  • Library: vnstock only.
  • Preferred sources: kbs first, vci fallback.
  • Never use tcbs.
  • Treat Screener API as unavailable unless user confirms it is restored in their installed version.

Free-tier operating rules

  • No API key: target <= 20 requests/minute.
  • Free API key: target <= 60 requests/minute.
  • Safe default pacing in scripts: 3.2s/request.
  • Reuse cached artifacts between steps.

Shared confidence rubric (required)

Report confidence as High / Medium / Low using this standard:

  • High: universe coverage >= 95%, critical metrics coverage >= 80%, and hard errors <= 5% of symbols.
  • Medium: universe coverage >= 80%, critical metrics coverage >= 60%, and hard errors <= 15%.
  • Low: below Medium thresholds or material missing fields that can flip ranking results.

Always output:

  1. Confidence level.
  2. Coverage stats (symbols_requested, symbols_scored, % missing by key metric).
  3. Top missing fields that may change conclusions.

API key configuration (implemented)

  • Skill-local key file: .env
  • Variable: VNSTOCK_API_KEY
  • All API-calling scripts auto-load this key and call vnstock auth setup before requests.
  • You can override per run with --api-key "...".

Execution workflow (ordered)

  1. Validate environment (python, vnstock, pandas) and load optional API key from .env.
  2. Build a universe using scripts/build_universe.py (group, exchange, or symbols mode).
  3. Collect market data with scripts/collect_market_data.py using safe pacing.
  4. Collect fundamentals with scripts/collect_fundamentals.py.
  5. Score and rank using scripts/score_stocks.py.
  6. Generate analyst-style memo with scripts/generate_report.py.
  7. Apply confidence rubric, disclose missing fields, and summarize risks.

Downstream handoff bundle (required when doing single-ticker deep dive)

When the user request is about valuing or building a memo for a specific ticker (or a small list), output a compact JSON bundle that downstream skills can reuse:

  • ticker, as_of_date, currency
  • financials (income/balance/cashflow + key ratios if available)
  • price_history (returns 1m/3m/6m/12m)
  • peer_set (if you built one)
  • metadata.source and data_quality_notes

This bundle is designed to feed equity-valuation-framework and portfolio-risk-manager.

Script map

A) Discovery and universal invocation (for broad feature coverage)

  1. catalog_vnstock.py Path: scripts/catalog_vnstock.py

Use when:

  • You need to inspect available classes/methods in the installed vnstock version.
  • You want to confirm compatibility before running a method.
  1. invoke_vnstock.py Path: scripts/invoke_vnstock.py

Use when:

  • You need to call any supported class/method beyond the prebuilt valuation pipeline.
  • You want one generic entry point for Listing, Quote, Company, Finance, Trading, Fund, or other exported classes.

This script supports dynamic invocation by class name and method name with JSON kwargs.

B) Valuation pipeline scripts

  1. build_universe.py Use when building symbol universe from index/exchange/custom symbol list. Input: source + mode + group/exchange/symbols. Output: outputs/universe_*.csv and latest pointers.

  2. collect_market_data.py Use when collecting OHLCV/momentum fields (3M, 6M, 12M returns). Input: universe CSV path. Output: outputs/market_data_*.csv + per-symbol errors in JSON.

  3. collect_fundamentals.py Use when collecting valuation and quality metrics from finance/company APIs. Input: universe CSV path. Output: outputs/fundamentals_*.csv + per-symbol errors in JSON.

  4. score_stocks.py Use when ranking symbols with composite scoring. Input: market + fundamentals CSV files. Output: outputs/ranking_*.csv.

  5. generate_report.py Use when converting ranking output to analyst-style markdown memo. Input: ranking CSV file. Output: outputs/investment_memo_*.md.

  6. run_pipeline.py Use when running the end-to-end pipeline in one command. Input: source + universe mode. Output: all artifacts above in one run.

Error handling rules

  1. Log symbol-level failures and continue processing remaining symbols.
  2. Do not claim missing metrics as zeros; mark them as missing.
  3. If a critical step fails, stop and report failed step + command + suggested retry scope.

Recommended decision logic

  1. If request is “standard valuation/ranking”: run pipeline scripts.
  2. If request needs a specific vnstock capability not in pipeline: use catalog_vnstock.py then invoke_vnstock.py.
  3. If request volume is large: apply free_tier_playbook.md throttling and chunking strategy.

Confidence aggregation (required)

When output includes ranking and valuation interpretation:

  1. Compute data confidence from coverage metrics (symbols_scored, missing key fields, error ratio).
  2. Compute model confidence from method robustness (single metric vs multi-factor consistency).
  3. Final confidence = lower of data confidence and model confidence.
  4. In Low confidence cases, provide directional output only and list required missing inputs.

Required output template

  1. What Was Run: scripts, source, universe scope, and pacing profile.
  2. Coverage: requested symbols, scored symbols, and missingness by key field.
  3. Top Results: ranked list with score columns.
  4. Key Risks: concentration, stale data, missing metrics, or provider limitations.
  5. Confidence and Gaps: final confidence + exact blockers.

Quick command examples

python scripts/catalog_vnstock.py --outdir ./outputs
python scripts/invoke_vnstock.py --class-name Quote --init-kwargs '{"source":"kbs","symbol":"VCB"}' --method history --method-kwargs '{"start":"2024-01-01","end":"2024-12-31","interval":"1D"}' --outdir ./outputs
python scripts/run_pipeline.py --source kbs --mode group --group VN30 --outdir ./outputs

Trigger examples

  • "Analyze VN30 using vnstock but keep it free-tier safe."
  • "Rank Vietnamese stocks by value/quality/momentum with KBS data."
  • "Run a full vnstock pipeline and return top candidates with risk notes."

如何使用「Vnstock Free Expert」?

  1. 打开小龙虾AI(Web 或 iOS App)
  2. 点击上方「立即使用」按钮,或在对话框中输入任务描述
  3. 小龙虾AI 会自动匹配并调用「Vnstock Free Expert」技能完成任务
  4. 结果即时呈现,支持继续对话优化

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